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Suparno Datta, Msc.
Suparno Datta, Msc.
Research Assistant, Ph.D. Student at Hasso Plattner Institute
Dirección de correo verificada de hpi.de
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Circle formation by asynchronous fat robots with limited visibility
A Dutta, S Gan Chaudhuri, S Datta, K Mukhopadhyaya
Distributed Computing and Internet Technology: 8th International Conference …, 2012
522012
Circle formation by asynchronous transparent fat robots
S Datta, A Dutta, S Gan Chaudhuri, K Mukhopadhyaya
Distributed Computing and Internet Technology: 9th International Conference …, 2013
282013
HPI-DHC at TREC 2018 Precision Medicine Track.
M Oleynik, E Faessler, AM Sasso, A Kappattanavar, B Bergner, ...
TREC, 2018
192018
A machine learning approach for non-invasive diagnosis of metabolic syndrome
S Datta, A Schraplau, HF Da Cruz, JP Sachs, F Mayer, E Böttinger
2019 IEEE 19th International Conference on Bioinformatics and Bioengineering …, 2019
112019
HYPE: Predicting blood pressure from photoplethysmograms in a hypertensive population
A Morassi Sasso, S Datta, M Jeitler, N Steckhan, CS Kessler, A Michalsen, ...
International Conference on Artificial Intelligence in Medicine, 325-335, 2020
92020
Predicting hypertension onset from longitudinal electronic health records with deep learning
S Datta, A Morassi Sasso, N Kiwit, S Bose, G Nadkarni, R Miotto, ...
JAMIA open 5 (4), ooac097, 2022
52022
Estimation of vacuolating cytotoxin secreted by different strains of Helicobacter pylori using bead enzyme-linked immunosorbent assay & its correlation with bacterial genotype
S Datta, H Kurazono, S Chattopadhyay, A Chowdhury, S Chaudhuri
Indian Journal of Medical Research 114, 192, 2001
22001
FIBER: enabling flexible retrieval of electronic health records data for clinical predictive modeling
S Datta, JP Sachs, H FreitasDa Cruz, T Martensen, P Bode, ...
JAMIA open 4 (3), ooab048, 2021
12021
Unsupervised Learning to Subphenotype Heart Failure Patients from Electronic Health Records
M Hackl, S Datta, R Miotto, E Bottinger
International Conference on Artificial Intelligence in Medicine, 219-228, 2021
2021
Correction to: HYPE: Predicting Blood Pressure from Photoplethysmograms in a Hypertensive Population
A Morassi Sasso, S Datta, M Jeitler, N Steckhan, CS Kessler, A Michalsen, ...
Artificial Intelligence in Medicine: 18th International Conference on …, 2020
2020
Unobtrusive Measurement of Blood Pressure During Lifestyle Interventions
AM Sasso, S Datta, B Pfitzner, L Zhou, N Steckhan, E Boettinger, ...
2019
Using Electronic Health Records to Predict the Onset of Hypertension with LSTMs
S Datta, AM Sasso, N Kiwit, S Bose, JP Sachs, G Nadkarni, R Miotto, ...
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Artículos 1–12